What You Need to Know Before
You Start
Starts 4 June 2026 04:12
Ends 4 June 2026
00
Days
00
Hours
00
Minutes
00
Seconds
9 hours
Optional upgrade avallable
Not Specified
Progress at your own speed
Paid Course
Optional upgrade avallable
Overview
This course equips learners with the essential skills and knowledge to design and implement sophisticated agent-based systems. The course covers long-term memory integration within agents, emphasizing the LangGraph framework.
Participants explore multi-agent architectures and state management, focusing on effective orchestration and data routing. Through hands-on projects, learners will implement agentic systems, culminating in the development of an Autonomous Knowledge Agent.
Syllabus
- Course Introduction
- Long-Term Agent Memory
- Long-Term Agent Memory in LangGraph
- Designing Multi-Agent Architecture
- Designing Multi-Agent Architectures with LangGraph
- State Management in Multi-Agent Systems
- Implementing Multi-Agent Architectures with LangGraph
- Orchestrating Agent Activities
- Orchestrating Agent Activities with LangGraph
- Routing and Data Flow in Agentic Systems
- Implementing Data Routing in Agentic Systems with LangGraph
- Building Agents Project: Autonomous Knowledge Agent
Meet your instructors and get an overview of advanced agentic systems and course structure.
Explore long-term agent memory: understand semantic, episodic, and procedural memories. Learn storage strategies and best practices for personalized, coherent interactions.
Learn how to persist agent memory in LangGraph using databases like SQLite and enhance long-term AI memory with vector storage via LangMem for robust, session-aware agents.
Explain the core components of multi-agent systems and how to design their high-level architecture.
Explore foundational multi-agent architecture patterns using LangGraph. Design, implement, and visualize orchestrated and peer-to-peer agent workflows for real-world scenarios.
Evaluate methods for tracking and updating agent state across multi-turn interactions.
Learn to design, implement, and orchestrate multi-agent workflows using LangGraph for structured, auditable, and automated content pipelines with specialized agents and custom state.
Apply orchestration techniques to coordinate multiple agent actions and achieve complex workflows.
Learn to orchestrate multi-agent workflows with LangGraph, using supervisors, handoffs, tool-calling, and structured state management for scalable, modular agent systems.
Configure routing mechanisms to manage data flow among agents in multi-agent systems.
Learn to implement content-based, round-robin, and priority-based data routing in agentic systems using LangGraph, Pydantic, and LangChain frameworks.
In this project, you will develop UDA-Hub, an intelligent, multi-agent decision suite capable of resolving customer support tickets across multiple platforms.
Taught by
Henrique Santana, Christopher Agostino and Joshua Bernhard
Subjects
Computer Science